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Wide-Area Shape Reconstruction by 3D Endoscopic System Based on CNN Decoding, Shape Registration and Fusion

机译:基于CNN解码,形状配准和融合的3D内窥镜系统进行广域形状重构

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摘要

For effective in situ endoscopic diagnosis and treatment, dense and large areal shape reconstruction is important. For this purpose, we develop 3D endoscopic systems based on active stereo, which projects a grid pattern where grid points are coded by line gaps. One problem of the previous works was that success or failure of 3D reconstruction depends on the stability of feature extraction from the images captured by the endoscope camera. Subsurface scattering or speculari-ties on bio-tissues make this problem difficult. Another problem was that shape reconstruction area was relatively small because of limited field of view of the pattern projector compared to that of the camera. In this paper, to solve the first problem, learning-based approach, i.e., U-Nets, for efficient detection of grid lines and codes at the detected grid points under severe conditions, is proposed. To solve the second problem, an online shape-registration and merging algorithm for sequential frames is proposed. In the experiments, we have shown that we can train U-Nets to extract those features effectively for three specimens of cancers, and also conducted 3D scanning of shapes of a stomach phantom model and a surface inside a human mouth, in which wide-area surfaces are successfully recovered by shape registration and merging.
机译:对于有效的原位内窥镜诊断和治疗,致密和大面积的形状重建很重要。为此,我们开发了基于主动立体的3D内窥镜系统,该系统投射出一种网格图案,其中网格点由线隙编码。先前工作的一个问题是3D重建的成功或失败取决于从内窥镜摄像机捕获的图像中提取特征的稳定性。生物组织上的地下散射或镜面反射使此问题变得困难。另一个问题是,由于图案投影仪的视场与照相机相比有限,因此形状重建区域相对较小。在本文中,为解决第一个问题,提出了一种基于学习的方法,即U-Net,用于在严酷条件下有效检测检测到的网格点处的网格线和代码。为了解决第二个问题,提出了一种在线连续形状融合算法。在实验中,我们证明了我们可以训练U-Net来有效地提取三个癌症样本的特征,并且还可以对人体模型的形状和人的嘴巴内表面进行3D扫描。通过形状对齐和合并成功恢复了曲面。

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